TY - JOUR
T1 - Gemelli decision tree Algorithm to Predict the need for home monitoring or hospitalization of confirmed and unconfirmed COVID-19 patients (GAP-Covid19): preliminary results from a retrospective cohort study
AU - Vetrugno, Giuseppe
AU - Laurenti, Patrizia
AU - Franceschi, Francesco
AU - Foti, Francesco
AU - D'Ambrosio, Francesca
AU - La Milia, Daniele Ignazio
AU - Di Pumpo, Marcello
AU - Pascucci, Domenico
AU - Boccia, Stefania
AU - Pastorino, Roberta
AU - Damiani, Gianfranco
AU - Oliva, Antonio
AU - Nicolotti, Nicola
AU - Cambieri, Andrea
AU - Murri, Rita
AU - Gasbarrini, Antonio
AU - Bosello, Silvia Laura
PY - 2021
Y1 - 2021
N2 - OBJECTIVE: To develop a deep learning-based decision tree for the primary care setting, to stratify adult patients with confirmed and unconfirmed coronavirus disease 2019 (COVID-19), and to predict the need for hospitalization or home monitoring.PATIENTS AND METHODS: We performed a retrospective cohort study on data from patients admitted to a COVID hospital in Rome, Italy, between 5 March 2020 and 5 June 2020. A confirmed case was defined as a patient with a positive nasopharyngeal RT-PCR test result, while an unconfirmed case had negative results on repeated swabs. Patients' medical history and clinical, laboratory and radiological findings were collected, and the dataset was used to train a predictive model for COVID-19 severity.RESULTS: Data of 198 patients were included in the study. Twenty-eight (14.14%) had mild disease, 62 (31.31%) had moderate disease, 64 (32.32%) had severe disease, and 44 (22.22%) had critical disease. The G(2) value assessed the contribution of each collected value to decision tree building. On this basis, SpO2 (%) with a cut point at 92 was chosen for the optimal first split. Therefore, the decision tree was built using values maximizing G(2) and LogWorth. After the tree was built, the correspondence between inputs and outcomes was validated.CONCLUSIONS: We developed a machine learning-based tool that is easy to understand and apply. It provides good discrimination in stratifying confirmed and unconfirmed COVID-19 patients with different prognoses in every context. Our tool might allow general practitioners visiting patients at home to decide whether the patient needs to be hospitalized.
AB - OBJECTIVE: To develop a deep learning-based decision tree for the primary care setting, to stratify adult patients with confirmed and unconfirmed coronavirus disease 2019 (COVID-19), and to predict the need for hospitalization or home monitoring.PATIENTS AND METHODS: We performed a retrospective cohort study on data from patients admitted to a COVID hospital in Rome, Italy, between 5 March 2020 and 5 June 2020. A confirmed case was defined as a patient with a positive nasopharyngeal RT-PCR test result, while an unconfirmed case had negative results on repeated swabs. Patients' medical history and clinical, laboratory and radiological findings were collected, and the dataset was used to train a predictive model for COVID-19 severity.RESULTS: Data of 198 patients were included in the study. Twenty-eight (14.14%) had mild disease, 62 (31.31%) had moderate disease, 64 (32.32%) had severe disease, and 44 (22.22%) had critical disease. The G(2) value assessed the contribution of each collected value to decision tree building. On this basis, SpO2 (%) with a cut point at 92 was chosen for the optimal first split. Therefore, the decision tree was built using values maximizing G(2) and LogWorth. After the tree was built, the correspondence between inputs and outcomes was validated.CONCLUSIONS: We developed a machine learning-based tool that is easy to understand and apply. It provides good discrimination in stratifying confirmed and unconfirmed COVID-19 patients with different prognoses in every context. Our tool might allow general practitioners visiting patients at home to decide whether the patient needs to be hospitalized.
KW - COVID-19
KW - Community-based care
KW - General practitioners
KW - Machine learning
KW - Primary health care
KW - SARS-CoV-2
KW - COVID-19
KW - Community-based care
KW - General practitioners
KW - Machine learning
KW - Primary health care
KW - SARS-CoV-2
UR - http://hdl.handle.net/10807/237874
U2 - 10.26355/eurrev_202103_25440
DO - 10.26355/eurrev_202103_25440
M3 - Article
SN - 2284-0729
VL - 25
SP - 2785
EP - 2794
JO - European Review for Medical and Pharmacological Sciences
JF - European Review for Medical and Pharmacological Sciences
ER -